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GET
FILE='C:Documents and SettingsDRjohnsonDesktopsppss2.sav'.
DATASET NAME DataSet1 WINDOW=FRONT.
REGRESSION
/DESCRIPTIVES MEAN STDDEV CORR SIG N
/MISSING LISTWISE
/STATISTICS COEFF OUTS R ANOVA CHANGE
/CRITERIA=PIN(.05) POUT(.10)
/NOORIGIN
/DEPENDENT Q1
/METHOD=ENTER race age maritalstatus income highestlevelschool.
Regression
Notes
Output Created 26-NOV-2013 11:51:32
Comments
Input
Data
C:Documents and
SettingsDRjohnsonDesktop
sppss2.sav
Active Dataset DataSet1
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working Data File 63
Missing Value Handling
Definition of Missing
User-defined missing values
are treated as missing.
Cases Used
Statistics are based on cases
with no missing values for
any variable used.
Syntax
REGRESSION
/DESCRIPTIVES MEAN
STDDEV CORR SIG N
/MISSING LISTWISE
/STATISTICS COEFF
OUTS R ANOVA CHANGE
/CRITERIA=PIN(.05)
POUT(.10)
/NOORIGIN
/DEPENDENT Q1
/METHOD=ENTER race
age maritalstatus income
highestlevelschool.
Resources
Processor Time 00:00:00.02
Elapsed Time 00:00:00.05
Memory Required 2812 bytes
Additional Memory Required for
Residual Plots
0 bytes
[DataSet1] C:Documents and SettingsDRjohnsonDesktopsppss2.sav
Descriptive Statistics
Mean Std.
Deviation
N
Q1 4.9677 .17813 62
race 2.3226 .88288 62
age 2.1452 1.15725 62
maritalstatus 1.6452 1.10285 62
income 1.2097 .41040 62
highestlevelschool 2.8387 .94424 62
Correlations
Q1 race age maritalstatu
s
income highestlevel
school
Pearson Correlation Q1 1.000 -.037 .023 .024 .094 -.031
race -.037 1.000 -.239 -.200 -.235 -.192
age .023 -.239 1.000 .542 .349 .547
maritalstatus .024 -.200 .542 1.000 .276 .448
income .094 -.235 .349 .276 1.000 .512
highestlevelschool -.031 -.192 .547 .448 .512 1.000
Sig. (1-tailed)
Q1 . .388 .429 .426 .234 .404
race .388 . .031 .059 .033 .067
age .429 .031 . .000 .003 .000
maritalstatus .426 .059 .000 . .015 .000
income .234 .033 .003 .015 . .000
highestlevelschool .404 .067 .000 .000 .000 .
N
Q1 62 62 62 62 62 62
race 62 62 62 62 62 62
age 62 62 62 62 62 62
maritalstatus 62 62 62 62 62 62
income 62 62 62 62 62 62
highestlevelschool 62 62 62 62 62 62
Variables Entered/Removeda
Model Variables
Entered
Variables
Removed
Method
1
highestlevel
school,
race,
maritalstatu
s, income,
ageb
. Enter
a. Dependent Variable: Q1
b. All requested variables entered.
Model Summary
Model R R Square Adjusted R
Square
Std. Error of
the
Estimate
Change Statistics
R Square
Change
F Change df1 df2
1 .140a
.020 -.068 .18409 .020 .223 5 56
Model Summary
Model Change Statistics
Sig. F Change
1 .951a
a. Predictors: (Constant), highestlevelschool, race, maritalstatus, income, age
ANOVAa
Model Sum of
Squares
df Mean
Square
F Sig.
1
Regression .038 5 .008 .223 .951b
Residual 1.898 56 .034
Total 1.935 61
a. Dependent Variable: Q1
b. Predictors: (Constant), highestlevelschool, race, maritalstatus, income, age
Coefficientsa
Model Unstandardized
Coefficients
Standardize
d
Coefficients
t Sig.
B Std. Error Beta
1
(Constant) 4.957 .120 41.220 .000
race -.004 .028 -.017 -.126 .900
age .004 .027 .029 .167 .868
maritalstatus .004 .026 .026 .163 .871
income .061 .068 .142 .905 .369
highestlevelschool -.025 .033 -.135 -.765 .447
a. Dependent Variable: Q1
GET
FILE='E:Survey Dr.Landor.sav'.
DATASET NAME DataSet1 WINDOW=FRONT.
GET
FILE='E:SPSS Data for Surveys.sav'.
DATASET NAME DataSet2 WINDOW=FRONT.
T-TEST GROUPS=Race(1 2)
/MISSING=ANALYSIS
/VARIABLES=Gender
/CRITERIA=CI(.95).
T-Test
Notes
Output Created 26-NOV-2013 18:39:07
Comments
Input
Data
E:SPSS Data for
Surveys.sav
Active Dataset DataSet2
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working Data
File
30
Missing Value Handling
Definition of Missing
User defined missing values
are treated as missing.
Cases Used
Statistics for each analysis
are based on the cases with
no missing or out-of-range
data for any variable in the
analysis.
Syntax
T-TEST GROUPS=Race(1
2)
/MISSING=ANALYSIS
/VARIABLES=Gender
/CRITERIA=CI(.95).
Resources
Processor Time 00:00:00.02
Elapsed Time 00:00:00.05
[DataSet2] E:SPSS Data for Surveys.sav
Group Statistics
Race N Mean Std. Deviation Std. Error Mean
Gender
Black 25 1.2800 .45826 .09165
White 2 1.0000 .00000 .00000
Independent Samples Test
Levene's Test for Equality of
Variances
t-test for Equality of
Means
F Sig. t df
Gender
Equal variances assumed 7.713 .010 .849 25
Equal variances not
assumed
3.055 24.000
Independent Samples Test
t-test for Equality of Means
Sig. (2-tailed) Mean Difference Std. Error
Difference
95% Confidence
Interval of the
Difference
Lower
Gender
Equal variances assumed .404 .28000 .32995 -.39954
Equal variances not assumed .005 .28000 .09165 .09084
Independent Samples Test
t-test for Equality of Means
95% Confidence Interval of the
Difference
Upper
Gender
Equal variances assumed .95954
Equal variances not assumed .46916
T-TEST GROUPS=Race(1 2)
/MISSING=ANALYSIS
/VARIABLES=Gender
/CRITERIA=CI(.95).
T-Test
Notes
Output Created 26-NOV-2013 18:45:59
Comments
Input
Data
E:SPSS Data for
Surveys.sav
Active Dataset DataSet2
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working Data
File
30
Missing Value Handling
Definition of Missing
User defined missing values
are treated as missing.
Cases Used
Statistics for each analysis
are based on the cases with
no missing or out-of-range
data for any variable in the
analysis.
Syntax
T-TEST GROUPS=Race(1
2)
/MISSING=ANALYSIS
/VARIABLES=Gender
/CRITERIA=CI(.95).
Resources
Processor Time 00:00:00.02
Elapsed Time 00:00:00.02
[DataSet2] E:SPSS Data for Surveys.sav
Group Statistics
Race N Mean Std. Deviation Std. Error Mean
Gender
Black 25 1.2800 .45826 .09165
White 5 1.0000 .00000 .00000
Independent Samples Test
Levene's Test for Equality of
Variances
t-test for Equality of
Means
F Sig. t df
Gender
Equal variances assumed 19.438 .000 1.347 28
Equal variances not
assumed
3.055 24.000
Independent Samples Test
t-test for Equality of Means
Sig. (2-tailed) Mean Difference Std. Error
Difference
95% Confidence
Interval of the
Difference
Lower
Gender
Equal variances assumed .189 .28000 .20785 -.14575
Equal variances not assumed .005 .28000 .09165 .09084
Independent Samples Test
t-test for Equality of Means
95% Confidence Interval of the
Difference
Upper
Gender
Equal variances assumed .70575
Equal variances not assumed .46916
T-TEST GROUPS=Race(1 2)
/MISSING=ANALYSIS
/VARIABLES=Gender
/CRITERIA=CI(.95).
T-Test
Notes
Output Created 26-NOV-2013 18:48:25
Comments
Input
Data
E:SPSS Data for
Surveys.sav
Active Dataset DataSet2
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working Data
File
2
Missing Value Handling
Definition of Missing
User defined missing values
are treated as missing.
Cases Used
Statistics for each analysis
are based on the cases with
no missing or out-of-range
data for any variable in the
analysis.
Syntax
T-TEST GROUPS=Race(1
2)
/MISSING=ANALYSIS
/VARIABLES=Gender
/CRITERIA=CI(.95).
Resources
Processor Time 00:00:00.02
Elapsed Time 00:00:00.24
[DataSet2] E:SPSS Data for Surveys.sav
Warnings
Command: T-TEST
File read error: file name E:SPSS Data for Surveys.sav: Invalid
argument (DATA1003)
Execution of this command stops.
Command: T-TEST
Input error when reading a case.
Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost.
The time now is 18:48:25.
T-TEST GROUPS=Race(1 2)
/MISSING=ANALYSIS
/VARIABLES=Gender
/CRITERIA=CI(.95).
T-Test
Notes
Output Created 26-NOV-2013 18:50:42
Comments
Input
Data
E:SPSS Data for
Surveys.sav
Active Dataset DataSet2
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working Data
File
2
Missing Value Handling
Definition of Missing
User defined missing values
are treated as missing.
Cases Used
Statistics for each analysis
are based on the cases with
no missing or out-of-range
data for any variable in the
analysis.
Syntax
T-TEST GROUPS=Race(1
2)
/MISSING=ANALYSIS
/VARIABLES=Gender
/CRITERIA=CI(.95).
Resources
Processor Time 00:00:00.02
Elapsed Time 00:00:00.01
[DataSet2] E:SPSS Data for Surveys.sav
Warnings
Command: T-TEST
File read error: file name E:SPSS Data for Surveys.sav: Invalid
argument (DATA1003)
Execution of this command stops.
Command: T-TEST
Input error when reading a case.
Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost.
The time now is 18:50:42.
CORRELATIONS
/VARIABLES=Smoke Alcohol
/PRINT=TWOTAIL NOSIG
/MISSING=PAIRWISE.
Correlations
Notes
Output Created 26-NOV-2013 18:57:21
Comments
Input Data
E:SPSS Data for
Surveys.sav
Active Dataset DataSet2
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working Data
File
2
Missing Value Handling
Definition of Missing
User-defined missing values
are treated as missing.
Cases Used
Statistics for each pair of
variables are based on all
the cases with valid data for
that pair.
Syntax
CORRELATIONS
/VARIABLES=Smoke
Alcohol
/PRINT=TWOTAIL NOSIG
/MISSING=PAIRWISE.
Resources
Processor Time 00:00:00.02
Elapsed Time 00:00:00.01
[DataSet2] E:SPSS Data for Surveys.sav
Warnings
Command: CORRELATIONS
File read error: file name E:SPSS Data for Surveys.sav: Invalid
argument (DATA1003)
Execution of this command stops.
Command: CORRELATIONS
Input error when reading a case.
Command: CORRELATIONS
File read error: file name E:SPSS Data for Surveys.sav: Invalid
argument (DATA1003)
Command: CORRELATIONS
Input error when reading a case.
Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost.
The time now is 18:57:21.
CORRELATIONS
/VARIABLES=Smoke Alcohol
/PRINT=TWOTAIL NOSIG
/MISSING=PAIRWISE.
Correlations
Notes
Output Created 26-NOV-2013 18:58:41
Comments
Input
Data
E:SPSS Data for
Surveys.sav
Active Dataset DataSet2
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working Data
File
2
Missing Value Handling
Definition of Missing
User-defined missing values
are treated as missing.
Cases Used
Statistics for each pair of
variables are based on all
the cases with valid data for
that pair.
Syntax
CORRELATIONS
/VARIABLES=Smoke
Alcohol
/PRINT=TWOTAIL NOSIG
/MISSING=PAIRWISE.
Resources
Processor Time 00:00:00.05
Elapsed Time 00:00:00.02
[DataSet2] E:SPSS Data for Surveys.sav
Warnings
Command: CORRELATIONS
File read error: file name E:SPSS Data for Surveys.sav: Invalid
argument (DATA1003)
Execution of this command stops.
Command: CORRELATIONS
Input error when reading a case.
Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost.
The time now is 18:58:41.
DATASET ACTIVATE DataSet2.
DATASET CLOSE DataSet1.
CORRELATIONS
/VARIABLES=Smoke Alcohol
/PRINT=TWOTAIL NOSIG
/MISSING=PAIRWISE.
Correlations
Notes
Output Created 26-NOV-2013 19:00:08
Comments
Input
Data
E:SPSS Data for
Surveys.sav
Active Dataset DataSet2
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working Data
File
2
Missing Value Handling Definition of Missing
User-defined missing values
are treated as missing.
Cases Used
Statistics for each pair of
variables are based on all
the cases with valid data for
that pair.
Syntax
CORRELATIONS
/VARIABLES=Smoke
Alcohol
/PRINT=TWOTAIL NOSIG
/MISSING=PAIRWISE.
Resources
Processor Time 00:00:00.00
Elapsed Time 00:00:00.00
[DataSet2] E:SPSS Data for Surveys.sav
Warnings
Command: CORRELATIONS
File read error: file name E:SPSS Data for Surveys.sav: Invalid
argument (DATA1003)
Execution of this command stops.
Command: CORRELATIONS
Input error when reading a case.
Command: CORRELATIONS
File read error: file name E:SPSS Data for Surveys.sav: Invalid
argument (DATA1003)
Command: CORRELATIONS
Input error when reading a case.
Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost.
The time now is 19:00:08.
T-TEST GROUPS=Gender(1 2)
/MISSING=ANALYSIS
/VARIABLES=GPA
/CRITERIA=CI(.95).
T-Test
Notes
Output Created 26-NOV-2013 19:03:10
Comments
Input
Data
E:SPSS Data for
Surveys.sav
Active Dataset DataSet2
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working Data
File
2
Missing Value Handling
Definition of Missing
User defined missing values
are treated as missing.
Cases Used
Statistics for each analysis
are based on the cases with
no missing or out-of-range
data for any variable in the
analysis.
Syntax
T-TEST GROUPS=Gender(1
2)
/MISSING=ANALYSIS
/VARIABLES=GPA
/CRITERIA=CI(.95).
Resources
Processor Time 00:00:00.00
Elapsed Time 00:00:00.00
[DataSet2] E:SPSS Data for Surveys.sav
Warnings
Command: T-TEST
File read error: file name E:SPSS Data for Surveys.sav: Invalid
argument (DATA1003)
Execution of this command stops.
Command: T-TEST
Input error when reading a case.
Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost.
The time now is 19:03:10.
CORRELATIONS
/VARIABLES=Smoke Alcohol
/PRINT=TWOTAIL NOSIG
/MISSING=PAIRWISE.
Correlations
Notes
Output Created 26-NOV-2013 19:08:03
Comments
Input
Data
E:SPSS Data for
Surveys.sav
Active Dataset DataSet2
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working Data
File
2
Missing Value Handling
Definition of Missing
User-defined missing values
are treated as missing.
Cases Used
Statistics for each pair of
variables are based on all
the cases with valid data for
that pair.
Syntax
CORRELATIONS
/VARIABLES=Smoke
Alcohol
/PRINT=TWOTAIL NOSIG
/MISSING=PAIRWISE.
Resources
Processor Time 00:00:00.02
Elapsed Time 00:00:00.01
[DataSet2] E:SPSS Data for Surveys.sav
Warnings
Command: CORRELATIONS
File read error: file name E:SPSS Data for Surveys.sav: Invalid
argument (DATA1003)
Execution of this command stops.
Command: CORRELATIONS
Input error when reading a case.
Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost.
The time now is 19:08:03.
CORRELATIONS
/VARIABLES=Smoke Alcohol
/PRINT=TWOTAIL NOSIG
/MISSING=PAIRWISE.
Correlations
Notes
Output Created 26-NOV-2013 19:08:53
Comments
Input Data
E:SPSS Data for
Surveys.sav
Active Dataset DataSet2
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working Data
File
2
Missing Value Handling
Definition of Missing
User-defined missing values
are treated as missing.
Cases Used
Statistics for each pair of
variables are based on all
the cases with valid data for
that pair.
Syntax
CORRELATIONS
/VARIABLES=Smoke
Alcohol
/PRINT=TWOTAIL NOSIG
/MISSING=PAIRWISE.
Resources
Processor Time 00:00:00.02
Elapsed Time 00:00:00.04
[DataSet2] E:SPSS Data for Surveys.sav
Warnings
Command: CORRELATIONS
File read error: file name E:SPSS Data for Surveys.sav: Invalid
argument (DATA1003)
Execution of this command stops.
Command: CORRELATIONS
Input error when reading a case.
Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost.
The time now is 19:08:53.

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Output

  • 1. GET FILE='C:Documents and SettingsDRjohnsonDesktopsppss2.sav'. DATASET NAME DataSet1 WINDOW=FRONT. REGRESSION /DESCRIPTIVES MEAN STDDEV CORR SIG N /MISSING LISTWISE /STATISTICS COEFF OUTS R ANOVA CHANGE /CRITERIA=PIN(.05) POUT(.10) /NOORIGIN /DEPENDENT Q1 /METHOD=ENTER race age maritalstatus income highestlevelschool. Regression Notes Output Created 26-NOV-2013 11:51:32 Comments Input Data C:Documents and SettingsDRjohnsonDesktop sppss2.sav Active Dataset DataSet1 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 63 Missing Value Handling Definition of Missing User-defined missing values are treated as missing. Cases Used Statistics are based on cases with no missing values for any variable used.
  • 2. Syntax REGRESSION /DESCRIPTIVES MEAN STDDEV CORR SIG N /MISSING LISTWISE /STATISTICS COEFF OUTS R ANOVA CHANGE /CRITERIA=PIN(.05) POUT(.10) /NOORIGIN /DEPENDENT Q1 /METHOD=ENTER race age maritalstatus income highestlevelschool. Resources Processor Time 00:00:00.02 Elapsed Time 00:00:00.05 Memory Required 2812 bytes Additional Memory Required for Residual Plots 0 bytes [DataSet1] C:Documents and SettingsDRjohnsonDesktopsppss2.sav Descriptive Statistics Mean Std. Deviation N Q1 4.9677 .17813 62 race 2.3226 .88288 62 age 2.1452 1.15725 62 maritalstatus 1.6452 1.10285 62 income 1.2097 .41040 62 highestlevelschool 2.8387 .94424 62 Correlations Q1 race age maritalstatu s income highestlevel school Pearson Correlation Q1 1.000 -.037 .023 .024 .094 -.031
  • 3. race -.037 1.000 -.239 -.200 -.235 -.192 age .023 -.239 1.000 .542 .349 .547 maritalstatus .024 -.200 .542 1.000 .276 .448 income .094 -.235 .349 .276 1.000 .512 highestlevelschool -.031 -.192 .547 .448 .512 1.000 Sig. (1-tailed) Q1 . .388 .429 .426 .234 .404 race .388 . .031 .059 .033 .067 age .429 .031 . .000 .003 .000 maritalstatus .426 .059 .000 . .015 .000 income .234 .033 .003 .015 . .000 highestlevelschool .404 .067 .000 .000 .000 . N Q1 62 62 62 62 62 62 race 62 62 62 62 62 62 age 62 62 62 62 62 62 maritalstatus 62 62 62 62 62 62 income 62 62 62 62 62 62 highestlevelschool 62 62 62 62 62 62 Variables Entered/Removeda Model Variables Entered Variables Removed Method 1 highestlevel school, race, maritalstatu s, income, ageb . Enter a. Dependent Variable: Q1 b. All requested variables entered. Model Summary Model R R Square Adjusted R Square Std. Error of the Estimate Change Statistics R Square Change F Change df1 df2
  • 4. 1 .140a .020 -.068 .18409 .020 .223 5 56 Model Summary Model Change Statistics Sig. F Change 1 .951a a. Predictors: (Constant), highestlevelschool, race, maritalstatus, income, age ANOVAa Model Sum of Squares df Mean Square F Sig. 1 Regression .038 5 .008 .223 .951b Residual 1.898 56 .034 Total 1.935 61 a. Dependent Variable: Q1 b. Predictors: (Constant), highestlevelschool, race, maritalstatus, income, age Coefficientsa Model Unstandardized Coefficients Standardize d Coefficients t Sig. B Std. Error Beta 1 (Constant) 4.957 .120 41.220 .000 race -.004 .028 -.017 -.126 .900 age .004 .027 .029 .167 .868 maritalstatus .004 .026 .026 .163 .871 income .061 .068 .142 .905 .369 highestlevelschool -.025 .033 -.135 -.765 .447 a. Dependent Variable: Q1 GET FILE='E:Survey Dr.Landor.sav'. DATASET NAME DataSet1 WINDOW=FRONT. GET
  • 5. FILE='E:SPSS Data for Surveys.sav'. DATASET NAME DataSet2 WINDOW=FRONT. T-TEST GROUPS=Race(1 2) /MISSING=ANALYSIS /VARIABLES=Gender /CRITERIA=CI(.95). T-Test Notes Output Created 26-NOV-2013 18:39:07 Comments Input Data E:SPSS Data for Surveys.sav Active Dataset DataSet2 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 30 Missing Value Handling Definition of Missing User defined missing values are treated as missing. Cases Used Statistics for each analysis are based on the cases with no missing or out-of-range data for any variable in the analysis. Syntax T-TEST GROUPS=Race(1 2) /MISSING=ANALYSIS /VARIABLES=Gender /CRITERIA=CI(.95). Resources Processor Time 00:00:00.02 Elapsed Time 00:00:00.05
  • 6. [DataSet2] E:SPSS Data for Surveys.sav Group Statistics Race N Mean Std. Deviation Std. Error Mean Gender Black 25 1.2800 .45826 .09165 White 2 1.0000 .00000 .00000 Independent Samples Test Levene's Test for Equality of Variances t-test for Equality of Means F Sig. t df Gender Equal variances assumed 7.713 .010 .849 25 Equal variances not assumed 3.055 24.000 Independent Samples Test t-test for Equality of Means Sig. (2-tailed) Mean Difference Std. Error Difference 95% Confidence Interval of the Difference Lower Gender Equal variances assumed .404 .28000 .32995 -.39954 Equal variances not assumed .005 .28000 .09165 .09084 Independent Samples Test t-test for Equality of Means 95% Confidence Interval of the Difference Upper Gender Equal variances assumed .95954 Equal variances not assumed .46916 T-TEST GROUPS=Race(1 2) /MISSING=ANALYSIS /VARIABLES=Gender
  • 7. /CRITERIA=CI(.95). T-Test Notes Output Created 26-NOV-2013 18:45:59 Comments Input Data E:SPSS Data for Surveys.sav Active Dataset DataSet2 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 30 Missing Value Handling Definition of Missing User defined missing values are treated as missing. Cases Used Statistics for each analysis are based on the cases with no missing or out-of-range data for any variable in the analysis. Syntax T-TEST GROUPS=Race(1 2) /MISSING=ANALYSIS /VARIABLES=Gender /CRITERIA=CI(.95). Resources Processor Time 00:00:00.02 Elapsed Time 00:00:00.02 [DataSet2] E:SPSS Data for Surveys.sav
  • 8. Group Statistics Race N Mean Std. Deviation Std. Error Mean Gender Black 25 1.2800 .45826 .09165 White 5 1.0000 .00000 .00000 Independent Samples Test Levene's Test for Equality of Variances t-test for Equality of Means F Sig. t df Gender Equal variances assumed 19.438 .000 1.347 28 Equal variances not assumed 3.055 24.000 Independent Samples Test t-test for Equality of Means Sig. (2-tailed) Mean Difference Std. Error Difference 95% Confidence Interval of the Difference Lower Gender Equal variances assumed .189 .28000 .20785 -.14575 Equal variances not assumed .005 .28000 .09165 .09084 Independent Samples Test t-test for Equality of Means 95% Confidence Interval of the Difference Upper Gender Equal variances assumed .70575 Equal variances not assumed .46916 T-TEST GROUPS=Race(1 2) /MISSING=ANALYSIS /VARIABLES=Gender /CRITERIA=CI(.95).
  • 9. T-Test Notes Output Created 26-NOV-2013 18:48:25 Comments Input Data E:SPSS Data for Surveys.sav Active Dataset DataSet2 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 2 Missing Value Handling Definition of Missing User defined missing values are treated as missing. Cases Used Statistics for each analysis are based on the cases with no missing or out-of-range data for any variable in the analysis. Syntax T-TEST GROUPS=Race(1 2) /MISSING=ANALYSIS /VARIABLES=Gender /CRITERIA=CI(.95). Resources Processor Time 00:00:00.02 Elapsed Time 00:00:00.24 [DataSet2] E:SPSS Data for Surveys.sav Warnings
  • 10. Command: T-TEST File read error: file name E:SPSS Data for Surveys.sav: Invalid argument (DATA1003) Execution of this command stops. Command: T-TEST Input error when reading a case. Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost. The time now is 18:48:25. T-TEST GROUPS=Race(1 2) /MISSING=ANALYSIS /VARIABLES=Gender /CRITERIA=CI(.95). T-Test Notes Output Created 26-NOV-2013 18:50:42 Comments Input Data E:SPSS Data for Surveys.sav Active Dataset DataSet2 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 2 Missing Value Handling Definition of Missing User defined missing values are treated as missing. Cases Used Statistics for each analysis are based on the cases with no missing or out-of-range data for any variable in the analysis.
  • 11. Syntax T-TEST GROUPS=Race(1 2) /MISSING=ANALYSIS /VARIABLES=Gender /CRITERIA=CI(.95). Resources Processor Time 00:00:00.02 Elapsed Time 00:00:00.01 [DataSet2] E:SPSS Data for Surveys.sav Warnings Command: T-TEST File read error: file name E:SPSS Data for Surveys.sav: Invalid argument (DATA1003) Execution of this command stops. Command: T-TEST Input error when reading a case. Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost. The time now is 18:50:42. CORRELATIONS /VARIABLES=Smoke Alcohol /PRINT=TWOTAIL NOSIG /MISSING=PAIRWISE. Correlations Notes Output Created 26-NOV-2013 18:57:21 Comments Input Data E:SPSS Data for Surveys.sav
  • 12. Active Dataset DataSet2 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 2 Missing Value Handling Definition of Missing User-defined missing values are treated as missing. Cases Used Statistics for each pair of variables are based on all the cases with valid data for that pair. Syntax CORRELATIONS /VARIABLES=Smoke Alcohol /PRINT=TWOTAIL NOSIG /MISSING=PAIRWISE. Resources Processor Time 00:00:00.02 Elapsed Time 00:00:00.01 [DataSet2] E:SPSS Data for Surveys.sav Warnings Command: CORRELATIONS File read error: file name E:SPSS Data for Surveys.sav: Invalid argument (DATA1003) Execution of this command stops. Command: CORRELATIONS Input error when reading a case. Command: CORRELATIONS File read error: file name E:SPSS Data for Surveys.sav: Invalid argument (DATA1003) Command: CORRELATIONS Input error when reading a case. Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost.
  • 13. The time now is 18:57:21. CORRELATIONS /VARIABLES=Smoke Alcohol /PRINT=TWOTAIL NOSIG /MISSING=PAIRWISE. Correlations Notes Output Created 26-NOV-2013 18:58:41 Comments Input Data E:SPSS Data for Surveys.sav Active Dataset DataSet2 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 2 Missing Value Handling Definition of Missing User-defined missing values are treated as missing. Cases Used Statistics for each pair of variables are based on all the cases with valid data for that pair. Syntax CORRELATIONS /VARIABLES=Smoke Alcohol /PRINT=TWOTAIL NOSIG /MISSING=PAIRWISE. Resources Processor Time 00:00:00.05 Elapsed Time 00:00:00.02 [DataSet2] E:SPSS Data for Surveys.sav
  • 14. Warnings Command: CORRELATIONS File read error: file name E:SPSS Data for Surveys.sav: Invalid argument (DATA1003) Execution of this command stops. Command: CORRELATIONS Input error when reading a case. Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost. The time now is 18:58:41. DATASET ACTIVATE DataSet2. DATASET CLOSE DataSet1. CORRELATIONS /VARIABLES=Smoke Alcohol /PRINT=TWOTAIL NOSIG /MISSING=PAIRWISE. Correlations Notes Output Created 26-NOV-2013 19:00:08 Comments Input Data E:SPSS Data for Surveys.sav Active Dataset DataSet2 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 2 Missing Value Handling Definition of Missing User-defined missing values are treated as missing.
  • 15. Cases Used Statistics for each pair of variables are based on all the cases with valid data for that pair. Syntax CORRELATIONS /VARIABLES=Smoke Alcohol /PRINT=TWOTAIL NOSIG /MISSING=PAIRWISE. Resources Processor Time 00:00:00.00 Elapsed Time 00:00:00.00 [DataSet2] E:SPSS Data for Surveys.sav Warnings Command: CORRELATIONS File read error: file name E:SPSS Data for Surveys.sav: Invalid argument (DATA1003) Execution of this command stops. Command: CORRELATIONS Input error when reading a case. Command: CORRELATIONS File read error: file name E:SPSS Data for Surveys.sav: Invalid argument (DATA1003) Command: CORRELATIONS Input error when reading a case. Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost. The time now is 19:00:08. T-TEST GROUPS=Gender(1 2) /MISSING=ANALYSIS /VARIABLES=GPA /CRITERIA=CI(.95).
  • 16. T-Test Notes Output Created 26-NOV-2013 19:03:10 Comments Input Data E:SPSS Data for Surveys.sav Active Dataset DataSet2 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 2 Missing Value Handling Definition of Missing User defined missing values are treated as missing. Cases Used Statistics for each analysis are based on the cases with no missing or out-of-range data for any variable in the analysis. Syntax T-TEST GROUPS=Gender(1 2) /MISSING=ANALYSIS /VARIABLES=GPA /CRITERIA=CI(.95). Resources Processor Time 00:00:00.00 Elapsed Time 00:00:00.00 [DataSet2] E:SPSS Data for Surveys.sav Warnings
  • 17. Command: T-TEST File read error: file name E:SPSS Data for Surveys.sav: Invalid argument (DATA1003) Execution of this command stops. Command: T-TEST Input error when reading a case. Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost. The time now is 19:03:10. CORRELATIONS /VARIABLES=Smoke Alcohol /PRINT=TWOTAIL NOSIG /MISSING=PAIRWISE. Correlations Notes Output Created 26-NOV-2013 19:08:03 Comments Input Data E:SPSS Data for Surveys.sav Active Dataset DataSet2 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 2 Missing Value Handling Definition of Missing User-defined missing values are treated as missing. Cases Used Statistics for each pair of variables are based on all the cases with valid data for that pair.
  • 18. Syntax CORRELATIONS /VARIABLES=Smoke Alcohol /PRINT=TWOTAIL NOSIG /MISSING=PAIRWISE. Resources Processor Time 00:00:00.02 Elapsed Time 00:00:00.01 [DataSet2] E:SPSS Data for Surveys.sav Warnings Command: CORRELATIONS File read error: file name E:SPSS Data for Surveys.sav: Invalid argument (DATA1003) Execution of this command stops. Command: CORRELATIONS Input error when reading a case. Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost. The time now is 19:08:03. CORRELATIONS /VARIABLES=Smoke Alcohol /PRINT=TWOTAIL NOSIG /MISSING=PAIRWISE. Correlations Notes Output Created 26-NOV-2013 19:08:53 Comments Input Data E:SPSS Data for Surveys.sav
  • 19. Active Dataset DataSet2 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 2 Missing Value Handling Definition of Missing User-defined missing values are treated as missing. Cases Used Statistics for each pair of variables are based on all the cases with valid data for that pair. Syntax CORRELATIONS /VARIABLES=Smoke Alcohol /PRINT=TWOTAIL NOSIG /MISSING=PAIRWISE. Resources Processor Time 00:00:00.02 Elapsed Time 00:00:00.04 [DataSet2] E:SPSS Data for Surveys.sav Warnings Command: CORRELATIONS File read error: file name E:SPSS Data for Surveys.sav: Invalid argument (DATA1003) Execution of this command stops. Command: CORRELATIONS Input error when reading a case. Any changes made to the working file since 06-NOV-2013 21:48:19 have been lost. The time now is 19:08:53.